Modeling the Frequency of Cyclists' Red-Light Running Behavior Using Bayesian PG Model and PLN Model

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Abstract

Red-light running behaviors of bicycles at signalized intersection lead to a large number of traffic conflicts and high collision potentials. The primary objective of this study is to model the cyclists' red-light running frequency within the framework of Bayesian statistics. Data was collected at twenty-five approaches at seventeen signalized intersections. The Poisson-gamma (PG) and Poisson-lognormal (PLN) model were developed and compared. The models were validated using Bayesian p values based on posterior predictive checking indicators. It was found that the two models have a good fit of the observed cyclists' red-light running frequency. Furthermore, the PLN model outperformed the PG model. The model estimated results showed that the amount of cyclists' red-light running is significantly influenced by bicycle flow, conflict traffic flow, pedestrian signal type, vehicle speed, and e-bike rate. The validation result demonstrated the reliability of the PLN model. The research results can help transportation professionals to predict the expected amount of the cyclists' red-light running and develop effective guidelines or policies to reduce red-light running frequency of bicycles at signalized intersections.

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Wu, Y., Lu, J., Chen, H., & Wan, Q. (2016). Modeling the Frequency of Cyclists’ Red-Light Running Behavior Using Bayesian PG Model and PLN Model. Discrete Dynamics in Nature and Society, 2016. https://doi.org/10.1155/2016/2593698

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